With the rapid progress of urbanization and civilization on earth, urban computing is emerging as a concept where every sensor, device, person, vehicle, building, and street in the urban areas can be used as a component to probe city dynamics to further enable city-wide computing for serving people and their cities. Urban computing aims to enhance both human life and urban environment smartly through a recurrent process of sensing, mining, understanding, and improving. Urban computing also aims to deeply understand the nature and sciences behind the phenomenon occurring in urban spaces, using a variety of heterogeneous data sources, such as traffic flows, human mobility, geographic and map data, environment, energy consumption, populations, and economics, etc.
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Inferring land use from mobile phone activity
Understanding the spatiotemporal distribution of people within a city is crucial to many planning applications. Obtaining data to create required knowledge, currently involves costly survey methods. At the same time ubiquitous mobile sensors from ...
Estimation of urban commuting patterns using cellphone network data
Commuting matrices are key for a variety of fields, including transportation engineering and urban planning. Up to now, these matrices have been typically generated from data obtained from surveys. Nevertheless, such approaches typically involve high ...
Identifying users profiles from mobile calls habits
The huge quantity of positioning data registered by our mobile phones stimulates several research questions, mainly originating from the combination of this huge quantity of data with the extreme heterogeneity of the tracked user and the low granularity ...
Characterizing large-scale population's indoor spatio-temporal interactive behaviors
Human activity behaviors in urban areas mostly occur in interior places, such as department stores, office buildings, and museums. Understanding and characterizing human spatio-temporal interactive behaviors in these indoor areas can help us evaluate ...
Mining traffic incidents to forecast impact
Using sensor data from fixed highway traffic detectors, as well as data from highway patrol logs and local weather stations, we aim to answer the domain problem: "A traffic incident just occurred. How severe will its impact be?" In this paper we show a ...
Sensing places' life to make city smarter
This paper explores the smart city concept and proposes an innovative way of sensing urban places' life using aggregation of devices sensors (cameras...) and human sensors (VGI, geosocial networks) datasets. The paper also discusses the need of an ...
City-scale traffic simulation from digital footprints
This paper introduces a micro-simulation of urban traffic flows within a large scale scenario implemented for the Greater Dublin region in Ireland. Traditionally, the data available for traffic simulations come from a population census and dedicated ...
Exploiting large-scale check-in data to recommend time-sensitive routes
Location-based services allow users to perform geo-spatial check-in actions, which facilitates the mining of the moving activities of human beings. This paper proposes to recommend time-sensitive trip routes, consisting of a sequence of locations with ...
Urban point-of-interest recommendation by mining user check-in behaviors
In recent years, researches on recommendation of urban Points-Of-Interest (POI), such as restaurants, based on social information have attracted a lot of attention. Although a number of social-based recommendation techniques have been proposed in the ...
Intention oriented itinerary recommendation by bridging physical trajectories and online social networks
Compared with traditional itinerary planning, intention oriented itinerary recommendation can provide more flexible activity planning without the user pre-determined destinations and is specially helpful for those strangers in unfamiliar environment. ...
Mining regular routes from GPS data for ridesharing recommendations
The widely use of GPS-enabled devices has provided us amount of trajectories related to individuals' activities. This gives us an opportunity to learn more about the users' daily lives and offer optimized suggestions to improve people's trip styles. In ...
Efficient distributed computation of human mobility aggregates through user mobility profiles
A basic task of urban mobility management is the real-time monitoring of traffic within key areas of the territory, such as main entrances to the city, important attractors and possible bottlenecks. Some of them are well known areas, while while others ...
Discovering urban spatial-temporal structure from human activity patterns
Urban geographers, planners, and economists have long been studying urban spatial structure to understand the development of cities. Statistical and data mining techniques, as proposed in this paper, go a long way in improving our knowledge about human ...
User oriented trajectory similarity search
Trajectory similarity search studies the problem of finding a trajectory from the database such the found trajectory most similar to the query trajectory. Past research mainly focused on two aspects: shape similarity search and semantic similarity ...
Towards fine-grained urban traffic knowledge extraction using mobile sensing
We introduce our vision for mining fine-grained urban traffic knowledge from mobile sensing, especially GPS location traces. Beyond characterizing human mobility patterns and measuring traffic congestion, we show how mobile sensing can also reveal ...
Exploration of ground truth from raw GPS data
To enable smart transportation, a large volume of vehicular GPS trajectory data has been collected in the metropolitan-scale Shanghai Grid project. The collected raw GPS data, however, suffers from various errors. Thus, it is inappropriate to use the ...
Coordinated clustering algorithms to support charging infrastructure design for electric vehicles
- Marjan Momtazpour,
- Patrick Butler,
- M. Shahriar Hossain,
- Mohammad C. Bozchalui,
- Naren Ramakrishnan,
- Ratnesh Sharma
The confluence of several developments has created an opportune moment for energy system modernization. In the past decade, smart grids have attracted many research activities in different domains. To realize the next generation of smart grids, we must ...
Avoiding the crowds: understanding Tube station congestion patterns from trip data
For people travelling using public transport, overcrowding is one of the major causes of discomfort. However, most Advanced Traveller Information Systems (ATIS) do not take crowdedness into account, suggesting routes either based on number of ...
Using smart card data to extract passenger's spatio-temporal density and train's trajectory of MRT system
Rapid tranit systems are the most important public transportation service modes in many large cities around the world. Hence, its service reliability is of high importance for government and transit agencies. Despite taking all the necessary precautions,...
Where to wait for a taxi?
People often have the demand to decide where to wait for a taxi in order to save their time. In this paper, to address this problem, we employ the non-homogeneous Poisson process (NHPP) to model the behavior of vacant taxis. According to the statistics ...
Smarter outlier detection and deeper understanding of large-scale taxi trip records: a case study of NYC
Outlier detection in large-scale taxi trip records has imposed significant technical challenges due to huge data volumes and complex semantics. In this paper, we report our preliminary work on detecting outliers from 166 millions taxi trips in the New ...
U2SOD-DB: a database system to manage large-scale <u>u</u>biquitous <u>u</u>rban <u>s</u>ensing <u>o</u>rigin-<u>d</u>estination data
Volumes of urban sensing data captured by consumer electronic devices are growing exponentially and current disk-resident database systems are becoming increasingly incapable of handling such large-scale data efficiently. In this paper, we report our ...
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Urban Computing: Concepts, Methodologies, and Applications
Special Section on Urban ComputingUrbanization's rapid progress has modernized many people's lives but also engendered big issues, such as traffic congestion, energy consumption, and pollution. Urban computing aims to tackle these issues by using the data that has been generated in ...